Anomaly Detection in Beehives using Deep Recurrent Autoencoders

Padraig Davidson, M. Steininger, Florian Lautenschlager, Konstantin Kobs, Anna Krause, A. Hotho
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引用次数: 15

Abstract

Precision beekeeping allows to monitor bees' living conditions by equipping beehives with sensors. The data recorded by these hives can be analyzed by machine learning models to learn behavioral patterns of or search for unusual events in bee colonies. One typical target is the early detection of bee swarming as apiarists want to avoid this due to economical reasons. Advanced methods should be able to detect any other unusual or abnormal behavior arising from illness of bees or from technical reasons, e.g. sensor failure. In this position paper we present an autoencoder, a deep learning model, which detects any type of anomaly in data independent of its origin. Our model is able to reveal the same swarms as a simple rule-based swarm detection algorithm but is also triggered by any other anomaly. We evaluated our model on real world data sets that were collected on different hives and with different sensor setups.
基于深度循环自编码器的蜂箱异常检测
通过在蜂箱上安装传感器,精确养蜂可以监测蜜蜂的生活状况。这些蜂箱记录的数据可以通过机器学习模型进行分析,以学习蜂群的行为模式或搜索蜂群中的异常事件。一个典型的目标是早期发现蜂群,因为养蜂人由于经济原因想要避免这种情况。先进的方法应该能够检测到由蜜蜂疾病或技术原因(如传感器故障)引起的任何其他异常或异常行为。在这篇论文中,我们提出了一种自动编码器,一种深度学习模型,可以检测数据中独立于其来源的任何类型的异常。我们的模型能够像简单的基于规则的群体检测算法一样揭示相同的群体,但也可以由任何其他异常触发。我们在真实世界的数据集上评估了我们的模型,这些数据集是在不同的蜂巢和不同的传感器设置上收集的。
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